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BMC Public Health logoLink to BMC Public Health
. 2010 Jan 30;10:48. doi: 10.1186/1471-2458-10-48

The association between farming activities, precipitation, and the risk of acute gastrointestinal illness in rural municipalities of Quebec, Canada: a cross-sectional study

Yossi Febriani 1, Patrick Levallois 1,2,, Suzanne Gingras 2, Pierre Gosselin 1,2,3, Shannon E Majowicz 4,5, Manon D Fleury 4
PMCID: PMC2834625  PMID: 20113516

Abstract

Background

Increasing livestock density and animal manure spreading, along with climate factors such as heavy rainfall, may increase the risk of acute gastrointestinal illness (AGI). In this study we evaluated the association between farming activities, precipitation and AGI.

Methods

A cross-sectional telephone survey of randomly selected residents (n = 7006) of 54 rural municipalities in Quebec, Canada, was conducted between April 2007 and April 2008. AGI symptoms and several risk factors were investigated using a phone questionnaire. We calculated the monthly prevalence of AGI, and used multivariate logistic regression, adjusting for several demographic and risk factors, to evaluate the associations between AGI and both intensive farming activities and cumulative weekly precipitation. Cumulative precipitation over each week, from the first to sixth week prior to the onset of AGI, was analyzed to account for both the delayed effect of precipitation on AGI, and the incubation period of causal pathogens. Cumulative precipitation was treated as a four-category variable: high (≥90th percentile), moderate (50th to <90th percentile), low (10th to <50th percentile), and very low (<10th percentile) precipitation.

Results

The overall monthly prevalence of AGI was 5.6% (95% CI 5.0%-6.1%), peaking in winter and spring, and in children 0-4 years old. Living in a territory with intensive farming was negatively associated with AGI: adjusted odds ratio (OR) = 0.70 (95% CI 0.51-0.96). Compared to low precipitation periods, high precipitation periods in the fall (September, October, November) increased the risk of AGI three weeks later (OR = 2.20; 95% CI 1.09-4.44) while very low precipitation periods in the summer (June, July, August) increased the risk of AGI four weeks later (OR = 2.19; 95% CI 1.02-4.71). Further analysis supports the role of water source on the risk of AGI.

Conclusions

AGI poses a significant burden in Quebec rural municipalities with a peak in winter. Intensive farming activities were found to be negatively associated with AGI. However, high and very low precipitation levels were positively associated with the occurrence of AGI, especially during summer and fall. Thus, preventive public health actions during such climate events may be warranted.

Background

Acute gastrointestinal illness (AGI) is a significant health problem in Canada. Three previous studies conducted in selected residents of Ontario and British Columbia estimated that the monthly prevalence of AGI in the study population ranged between 8 and 10% [1-3]. Moreover, as estimated from selected residents of Hamilton (Ontario), each AGI case brings estimated costs of around $1089 CAD annually [4].

Animal manure contains AGI-causing microbial pathogens. Direct and indirect contact with farm animals or their excreta, such as working or living on a farm, are considered to increase the risk of AGI [5,6]. Furthermore, climate factors such as extreme precipitation have also been associated with AGI [7-9].

In Quebec, according to the Ministère du Développement durable, de l'Environnement et des Parcs (MDDEP), seven Quebec watersheds are considered to have high intensive farming activities (dominated by hogs) and be overloaded with manure [10,11], based on the needs in fertilizer of soils in the basin. An increased risk of hospitalization for AGI in the territory with high farming activities has been observed recently, especially in young children, but the ecological study design precluded causal inference [12]. Therefore, this study was conducted to evaluate the association between farming activities, precipitation, and AGI at the individual level. Furthermore, we assessed the effect modification of age, water source, and season on the association between AGI and both farming activities and precipitation. Additionally, we assessed the effect modification of farming activities on the association between AGI and precipitation.

Methods

Study design

A cross-sectional telephone survey of randomly selected residents in 54 selected rural municipalities in Quebec, Canada was conducted between April 24th, 2007 and April 21st, 2008, with an interruption between December 19th, 2007 and January 2nd, 2008 due to Christmas holidays.

Interviews were conducted by trained interviewers from a Quebec survey firm. Residential telephone numbers with a Quebec area code were randomly sampled. At the beginning of the interview, the number (x) and age of persons living in the household were obtained and a number was assigned to each person by age from 1 (the youngest) to x (the oldest). A person was then randomly selected using this number (e.g. if the number selected was 1, then the youngest person in the house was asked to participate, if the number selected was 2, the second youngest person in the household was asked to participate). This age-based selection procedure was chosen in order to more accurately represent the study population. Proxy respondents were used when the selected participant was (a) <14 years, (b) 14 to 17 years, at the discretion of the parent or guardian, or (c) >17 years, when a developmental or intellectual disability prevented the respondents from answering themselves. Twenty attempts were made to contact the selected individual. Questionaires were administered in French or English, as requested by respondent, using computer-assisted telephone interviewing (CATI) software. The following persons were excluded: (a) children three months old or younger; (b) individuals who lived in institutions, for example chronic care facilities or nursing homes; and (c) individuals who did not speak French or English.

A sample size of 3,500 in each study population (explained below as high intensity farming area or low intensity farming area) for a total of 7,000 people was calculated to estimate a monthly prevalence of AGI of 10%, with an allowable error of 1% and a type 1 error of 5%. Interviews were conducted equally over the 12 month period, with an approximately equal number of interviews completed each day. The average time of interview was about 10 minutes, lasting longer for participants having had an episode of AGI.

Ethical approval for this study was obtained from Le Comité d'éthique de la recherche de l'Université Laval (Quebec, Canada).

Study population

The study population was classified into two groups. The first group consisted of all residents of 31 rural municipalities (total population = 55,434) with high intensive animal farming activities, located in seven watersheds considered by the MDDEP to be overloaded with manure [10]. These watersheds involve the following Quebec rivers: Chaudière, Etchemin, Boyer, L'Assomption, Bayonne, Yamaska, and Nicolet, all located along the St. Lawrence river. A municipality with high intensive animal farming activities is defined as one with: 1) ≥ 25% of its surface area used for farming activities (cultivation and animal breeding); 2) a phosphorus index of ≥ 20 kg/ha per year, and; 3) an animal density of ≥ 2 animal units/hectare (AU/ha) of cultivated land.

The second group consisted of all residents of 23 rural municipalities (total population = 39,413) with low intensive animal farming activities located outside the seven watersheds, in the southern Quebec. A municipality with low intensive animal farming is defined as one with: 1) ≥ 25% of its surface area used for farming activities (cultivation and animal breeding); 2) a phosphorous index ≤ -20 kg/ha per year and; 3) an animal density ≤ 0.4 AU/ha.

The phosphorous index for each municipality was obtained from MDDEP. The phosphorus index is an indicator used to assess the overproduction of manure in a municipality by using the soil-surface phosphorous balance. The index (kg/ha per year) was calculated for each study municipality as the quantity of phosphorus produced by farm animals (kg/year) minus the estimated quantity of phosphorous consumed by cultivated plants (kg/year), divided by the total cultivated area (ha). A positive result indicates a surplus of manure while a negative result indicates a deficit [10].

To focus the study on small municipalities with vulnerable water sources, and to reduce the possibility of exposure contamination between municipalities of the two groups, municipalities were excluded from the study population if they: 1) had a population >5,000; 2) had the St. Lawrence river as their drinking water source as it is a very large river with high diluting power considered to be less contaminated, or; 3) were low intensive farming areas located within about 30 km from the seven watersheds.

Case definition

A case of AGI was defined as an individual who reported either (a) three or more loose stools in 24 hours, and/or (b) any vomiting, in the 28 days prior to interview. Individuals were excluded from the case group if they had one of the following conditions, which they believed was the cause of their symptoms: (a) a pre-existing illness, previously diagnosed by a physician, in which vomiting or diarrhea are major symptoms; (b) taking a prescription drug or medical treatment known to cause vomiting or diarrhea, or which has vomiting or diarrhea as a side effect; (c) intestinal or stomach surgery; or (d) taking alcohol or other substances, or (e) pregnancy. Individuals excluded from the case group were retained in the non-case group.

Data collection, sources and variables

The cross sectional telephone survey collected data on symptoms, demographic determinants (age, sex, education, family income, etc), and risk factors of AGI. Individual-level risk factors measured by the questionaire were: water source (community waterworks, domestic wells or others), ingestion of possibly contaminated water, consumption of risky foods (raw meat, fish, or egg; unpasteurized milk or milk cheese), and occupation or living environment in which the individual may have been in contact with human or animal stools.

Municipality-level risk factors were determined as follows. Data on animal farming activities for each municipality, last updated in 2006, were obtained from the MDDEP and the Ministère de l'Agriculture, des Pêcheries, et de l'Alimentation du Québec (MAPAQ).

Community water sources (surface or ground water) and type of treatments (filtration, disinfection or both) were obtained from the MDDEP for each study municipality. When respondent's answered 'community waterworks' as their water source, we clarified whether it was community surface or ground water. We also created a variable combining the water source and type of treatments. However, since we did not observed significant variation of risk of AGI across the variable's levels, we conducted the analysis using the water source information only. Water source was thus classified as a four-category variable: community ground water, community surface water, domestic wells, and others.

Daily precipitation (mm) data were obtained from MDDEP's meteorology station surveillance data. The latitude and longitude coordinates of each municipality and station were identified in order to measure the distance between a station and a municipality. Data were extracted from 28 selected stations and assigned to a study municipality from the closest station. Data for the municipalities with high intensive farming activities were acquired from 16 stations while those for municipalities with low intensive farming were acquired from 12 stations. Therefore, some municipalities within the same intensive farming activity group shared station data.

A variable named 'season' was created, based on the date of onset of AGI (for cases) or the date of interview (for non-cases). 'Season' was classified as: winter (December 1st to February 29th), spring (March 1st to May 31st), summer (June 1st to August 31st) and fall (September 1st to November 30th) as already used in other studies [7,13].

Statistical analysis

Individuals who responded 'don't know/not sure' or refused to answer a question were excluded from the analysis for that question. We compared the demographic characteristics of respondents in high versus low intensive farming communities using a Chi-square test. Analyses were weighted by age and sex to the population of the study area according to the data from the 2006 Canadian census of population (Statistics Canada). A p-value of ≤ 0.05 was considered statistically significant. All analyses were conducted in SAS version 9.1 [14].

We calculated the monthly prevalence of AGI, defined as the number of AGI cases divided by the total number of respondents, both overall and for each variable category. Healthcare seeking behavior of the AGI cases was also described.

Univariate analysis

We assessed the association between each explanatory variable and AGI in a logistic regression model, and odds ratios (OR) were calculated to estimate the risk of AGI. Variables with a p-value < 0.2 were selected to be included in the multivariate analysis, except for the variables 'water source' and 'precipitation', which were included in the multivariate regression regardless of the univariate p-value. Variables measured at municipality-level were assigned to each respondent within the same municipality. Therefore, for the analysis of the municipality-level variable, a generalized estimating equation (GEE) approach was incorporated into the model and municipality was entered as a repeated effect [15].

Multivariate analysis

Multivariate analyses were carried out using logistic regression models, to measure association between AGI and both intensive animal farming activities (high versus low) and cumulative precipitation. The GEE approach was used in all multivariate analyses, and multicollinearity between variables was checked by calculating variation inflation factors and eigenvalues. Effect modification was assessed by using the Wald test for the interaction term included in the model. An effect modification occurs when the effect of an exposure, compared with a reference unexposed condition, depends on the level of one or more other factors [16].

Association between intensive animal farming activities and AGI

Multivariate regression was used to assess the association between intensive animal farming activities and AGI. Variables with a univariate p-value < 0.2 (except the variable "precipitation") were all included in the initial model. We then deleted the potential confounders one by one starting with the variable with the largest p-value. Variables which were statistically significant (p ≤ 0.05), or considered to be important risk factors of AGI, or which showed confounding effects were kept in the final model. A variable was considered to be confounding if the difference of the OR before and after the variable was entered to the model was ≥ 10%. We then assessed the effect modification of the following variables on the association: age, water source, and season; by entering the interaction term of the variable "farming" and the potentially modifying variable in the final model. Each potentially modifying variable was assessed separately.

Association between cumulative weekly precipitation and AGI

Multivariate regression was used to assess the association between cumulative weekly precipitation and AGI. The variable "precipitation" was added to the same final model as that used to assess the association between animal farming activity and AGI. Cumulative weekly precipitation was calculated in six one-week-periods [1-7, 8-14, 15-21, 22-28, 29-35, 36-42 days] prior to the onset AGI (for cases) or the day of interview (for non-cases). These one-week-periods were selected considering (a) the incubation period of the pathogens, which can be up to 4 weeks, and (b) the time it takes for water or food to become contaminated and be ingested [8,13,17]. An analysis using each of the six time periods was used to account for the lagged effect of precipitation on AGI. Each time period was assessed separately and the OR was calculated. Precipitation was also explored as a four-category variable: high (≥90th percentile), moderate (50th to <90th percentile), low (10th to <50th percentile), and very low (<10th percentile) precipitation with low precipitation being the reference category. The season of winter was excluded from the analysis because during the winters in Quebec, precipitation is predominantly in the form of snow rather than rain. The following variables were considered as potentially modifying the association between precipitation and AGI: "farming activity", "age", "water source", and "season". The effect modification of each of those variables on the association was assessed for each time period separately. Furthermore, based on the results, triple interactions between variables (with significant two way interactions) were assessed.

Results

Response rate

Of the 15,859 individuals in the sampling frame, 15,519 could be contacted, 12,089 (77.9%) were eligible to participate, and a total of 7,006 participated in the full study. Of the 340 individuals unable to be contacted, we assumed that 77.9% (n = 265) would have been eligible to participate in the study. Thus, the estimate response rate for this study was 56.7% (7,006/[12,089 + 265]).

Demographic characteristics and the prevalence of AGI

The comparison of demographic characteristics of respondents in each of the rural municipalities with high and low intensive farming is shown in Table 1. Respondents in municipalities with high intensive farming activities were less affluent (p < 0.001), less educated (p < 0.001) and more culturally homogeneous (p = 0.005) than those in municipalities with low intensive farming activities.

Table 1.

Comparison of demographic characteristics of respondents living in Quebec rural municipalities with high and low intensive animal farming, Canada, April 2007 to April 2008

Demographic characteristic n High intensive farming (%) n Low intensive farming (%) n Total (%) p*
Total 3506 50.0 3500 50.0 7006 100
Sex (n = 7006) 0.625
 Male 1573 44.9 1550 44.3 3123 44.6
 Female 1933 55.1 1950 55.7 3883 55.4
Age (years) (n = 7006) 0.134
 0-4 171 4.9 130 3.7 301 4.3
 5-9 147 4.2 139 4.0 286 4.1
 10-19 344 9.8 373 10.7 717 10.2
 20-29 312 8.9 296 8.5 608 8.7
 30-39 339 9.7 379 10.8 718 10.2
 40-49 596 17.0 558 15.9 1154 16.5
 50-59 687 19.6 693 19.8 1380 19.7
 60-69 534 15.2 573 16.4 1107 15.8
 70-79 265 7.6 265 7.6 530 7.6
 ≥80 111 3.2 94 2.7 205 2.9
Total household income (n = 6185) < 0.001
 <$20000 470 15.0 398 13.0 868 14.0
 ≥$20000-<$40000 972 31.0 808 26.5 1780 28.8
 ≥$40000-<$60000 816 26.1 784 25.7 1600 25.9
 ≥$60000-<$80000 460 14.7 494 16.2 954 15.4
 ≥$80000 413 13.2 570 18.7 983 15.9
Education† (n = 6655) < 0.001
 No high school diploma 1153 40.8 884 31.3 2037 36.0
 High school diploma 1035 36.6 1068 37.8 2103 37.2
 College diploma 341 12.1 406 14.3 747 13.2
 University graduate or higher 296 10.5 471 16.6 767 13.6
Cultural group (n = 6910) 0.005
 Caucasian 3444 99.6 3419 99.0 6863 99.3
 Others 14 0.4 33 1.0 47 0.7
No. individuals‡ in household (n = 7006) 0.305
 1 719 20.5 692 19.8 1411 20.1
 2 1234 35.2 1295 37.0 2529 36.1
 3 557 15.9 526 15.0 1083 15.5
 4 618 17.6 642 18.3 1260 18.0
 ≥5 378 10.8 345 9.9 723 10.3

*Global p-value for each demographic characteristic for the total respondents.

†Distribution of survey respondents for each education level was calculated for those aged > 19 years old.

‡Older than 3 months old.

The following gastro-enteric symptoms within 28 days prior to the interview were reported by respondents: vomiting only (n = 90), three or more loose stools in 24 hours only (n = 257), vomiting and/or three or more loose stools in 24 hours (n = 454; corresponded to cases definition). Of the 454 cases, 75 had other conditions and/or pre-existing illness in which diarrhoea and/or vomiting were possibly the symptoms and therefore these cases were excluded from the case group, resulting in a total of 379 cases.

The overall AGI prevalence was 5.59%. The prevalence of AGI in high intensive farming municipalities was 4.71% and in low intensive farming municipalities 6.84% (Table 2). The peak prevalence was observed in children 0-4 years old (Table 2) and in winter and spring (Table 3).

Table 2.

Prevalence and odds ratios (OR) from the univariate analysis of demographic-related risk factors of acute gastrointestinal illness in Quebec rural municipalities, Canada, April 2007 to April 2008

W.n* Prevalence (%) OR (95% CI) p
Overall prevalence 7006 5.59 - -
Sex
 Male† 3576 5.48 1.00 -
 Female 3430 5.71 1.04 (0.85-1.28) 0.680
Age (years) <0.001‡
 0-4 366 14.18 3.44 (2.31-5.13) <0.001
 5-9 411 10.28 2.38 (1.57-3.62) <0.001
 10-19 1022 5.12 1.12 (0.76-1.66) 0.557
 20-29 813 7.33 1.64 (1.13-2.40) 0.010
 30-39 867 6.39 1.42 (0.97-2.08) 0.074
 40-49† 1194 4.59 1.00 -
 50-59 1050 3.86 0.83 (0.55-1.26) 0.392
 60-69 701 3.07 0.66 (0.40-1.09) 0.107
 70-79 381 2.41 0.51 (0.25-1.04) 0.065
 ≥ 80 199 2.14 0.45 (0.17-1.23) 0.121
Total household income 0.012‡
 <$20000† 612 4.56 1.00 -
 ≥$20000-<$40000 1658 4.65 1.02 (0.66-1.59) 0.925
 ≥$40000-<$60000 1691 6.68 1.50 (0.98-2.29) 0.062
 ≥$60000-<$80000 1080 4.97 1.09 (0.68-1.75) 0.704
 ≥$80000 1157 7.07 1.59 (1.03-2.48) 0.038
Education§ <0.001‡
 No high school diploma† 1722 3.10 1.00 -
 High school diploma 2027 5.08 1.67 (1.19-2.34) 0.003
 College diploma 749 5.89 1.95 (1.30-2.94) 0.001
 University graduate or 669 6.60 2.20 (1.46-3.32) <0.001
 higher
Cultural group
 Caucasian 6866 5.60 0.86 (0.26-2.79) 0.796
 Others† 46 6.48 1.00 -
Number of individuals¶ in household <0.001‡
 1† 596 4.82 1.00 -
 2 1932 4.07 0.88 (0.56-1.38) 0.582
 3 1232 6.46 1.38 (0.88-2.17) 0.162
 4 1849 7.30 1.60 (1.04-2.46) 0.031
 ≥ 5 1398 6.36 1.39 (0.88-2.17) 0.150
Length of stay in the municipality <0.001‡
 Less than a year 214 6.86 1.79 (1.03-3.10) 0.039
 1 to 5 years 1440 8.60 2.28 (1.80-2.90) <0.001
 6 to 10 years 1005 8.08 2.13 (1.62-2.80) <0.001
 Over 10 years† 4346 3.96 1.00 -
Geographic location
High intensive farming 4100 4.71 0.68 (0.51-0.88) 0.004
Low intensive farming† 2906 6.84 1.00 -

* Weighted n, weighted by age and sex to the population of the study area, according to the data from the 2006 Canadian census of population.

† Reference.

‡ Global p-value.

§Prevalence of each education level was calculated for respondents aged > 19 years old.

¶Older than 3 months old.

Table 3.

Prevalence and odds ratios (OR) from the univariate analysis of water and climate-related risk factors of acute gastrointestinal illness in Quebec rural municipalities, Canada, April 2007 to April 2008

W.n* Prevalence (%) OR (95% CI) p
Tap water consumption (1 serving = 250 ml) 0.999‡
 No water† 2002 5.46 1.00 -
 Less than 4 servings 2231 5.45 1.00 (0.76-1.30) 0.987
 Between 4 and 8 servings 2118 5.38 0.98 (0.75-1.29) 0.912
 More than 8 servings 255 5.54 1.01 (0.57-1.79) 0.958
Home water treatment 0.243‡
 Use a water treatment device† 1739 5.33 1.00 -
 Boil water 286 7.80 1.50 (0.93-2.42) 0.098
 None of them 4969 5.56 1.04 (0.82-1.33) 0.724
Water source 0.143‡
 Community ground water† 1980 5.57 1.00 -
 Community surface water 1230 6.93 1.26 (0.94-1.69) 0.116
 Domestic wells 3532 5.25 0.94 (0.74-1.20) 0.612
 Others 238 4.56 0.81 (0.43-1.53) 0.518
Septic systems
 Municipal sewer† 2995 5.66 1.00 -
 Septic tanks 3736 5.56 0.98 (0.79-1.21) 0.851
Swim
In a public swimming pool or whirlpool
 Yes 632 8.01 1.54 (1.13-2.09) 0.006
 No† 6372 5.35 1.00 -
In a lake or a river
 Yes 411 5.48 0.98 (0.63-1.51) 0.921
 No† 6593 5.60 1.00 -
Precipitation§
Week 1 (days 1-7) 0.824‡
 High 663 5.19 0.94(0.60-1.47) 0.790
 Moderate 2234 5.26 0.94 (0.72-1.23) 0.672
 Low† 1917 5.62 1.00 -
 Very low 598 4.63 0.80(0.50-1.27) 0.342
Week 2 (days 8-14) 0.962‡
 High 616 4.84 0.90 (0.55-1.45) 0.654
 Moderate 2114 5.30 0.99 (0.70-1.42) 0.979
 Low† 2014 5.43 1.00 -
 Very low 644 5.58 1.03(0.67-1.59) 0.894
Week 3 (days 15-21) 0.204‡
 High 648 5.71 1.05 (0.70-1.57) 0.800
 Moderate 2115 5.53 1.02 (0.76-1.37) 0.894
 Low† 2209 5.54 1.00 -
 Very low 626 3.47 0.61 (0.37-1.00) 0.051
Week 4 (days 22-28) 0.822‡
 High 579 5.40 1.06 (0.65-1.73) 0.817
 Moderate 2151 5.14 1.01(0.75-1.36) 0.958
 Low† 2052 5.20 1.00 -
 Very low 638 6.26 1.23 (0.80-1.89) 0.835
Week 5 (days 29-35) 0.406‡
 High 662 6.09 1.04 (0.65-1.68) 0.855
 Moderate 2318 4.82 0.82 (0.57-1.18) 0.283
 Low† 1831 5.94 1.00 -
 Very low 612 4.13 0.69 (0.39-1.20) 0.185
Week 6 (days 36-42) 0.323‡
 High 603 5.15 0.71 (0.43-1.19) 0.201
 Moderate 2116 5.77 1.16 (0.84-1.60) 0.367
 Low† 2095 3.59 1.00 -
 Very low 609 5.09 0.99 (0.60-1.64) 0.973
Season 0.012‡
 Winter 1546 6.63 1.53 (1.13-2.07) 0.005
 Spring 1822 6.40 1.47 (1.10-1.98) 0.009
 Summer 1830 5.06 1.14 (0.85-1.96) 0.373
 Fall† 1807 4.43 1.00 -

* Weighted n, weighted by age and sex to the population of the study area, according to the data from the 2006 Canadian census of population.

† Reference.

‡ Global p-value.

§ Each one-week-period [prior to the onset of AGI (for cases) or the interview date (for non-cases)] was modelled separately. Winter season was excluded for the analysis because of very cold winters in Quebec, with precipitation taking mostly the form of snow during that season.

Health professionals were visited by 14.8% (n = 49) of cases. A physician was visited by 11.6% (n = 44) of cases, <1% of cases (n = 1) visited a nurse, and 1% of cases (n = 4) visited a pharmacist. Twelve cases (3.2%) reported that a stool sample had been taken and seven cases (1.8%) were hospitalized. Fourteen cases took prescribed medications including anti-diarrhoeal (n = 5), anti-nausea (n = 1), antibiotics (n = 5), and other medications such as antacid or anti-inflammatory (n = 3).

Univariate analysis

Higher income (p = 0.012), higher level of education (p < 0.001), and higher number of individuals over 3 months old in the household (p < 0.001) increased the odds of AGI. The odds of AGI were lower in the older age group and in individuals who had lived for a longer period in the municipality (p < 0.001) (Table 2).

Swimming in a public swimming pool or whirlpool was positively associated with AGI (p = 0.006). For the climate factors, the odds of AGI in winter and spring were higher compared to fall (p = 0.012). Cumulative weekly precipitation of the six lagged one-week-periods was not found to be associated with AGI. Furthermore, water source was not associated with AGI (p = 0.143) (Table 3).

Living in an area of high intensive farming activity was negatively associated with AGI (p = 0.004). Working as a day care provider or working in the health sector where one could have been in contact with human stools was positively associated with AGI (p = 0.023; Table 4).

Table 4.

Prevalence and odds ratios (OR) from the univariate analysis of farm-related and other risk factors of acute gastrointestinal illness in Quebec rural municipalities, Canada, April 2007 to April 2008

Variable W.n* Prevalence (%) OR (95% CI) p
Contact with animal or manure
Living in farming municipalities
 High intensive farming 4100 4.71 0.68 (0.51-0.88) 0.004
 Low intensive farming† 2906 6.84 1.00 -
The presence of manure at 300 m away or less from the house
 Yes 2127 6.13 1.17 (0.94-1.45) 0.168
 No† 4749 5.31 1.00 -
Keeping farm animals
 Yes 965 5.43 0.96 (0.71-1.30) 0.811
 No† 6041 5.62 1.00 -
Having pets at home
 Yes 4171 5.89 1.15 (0.93-1.41) 0.194
 No† 2832 5.16 1.00 -
Consumption of risky food
Raw or rare meat
 Yes 438 5.04 0.90 (0.58-1.39) 0.626
 No† 6551 5.59 1.00 -
Unpasteurized milk or raw milk cheese
 Yes 929 4.16 0.70 (0.50-0.99) 0.042
 No† 6076 5.81 1.00 -
Raw egg
 Yes 391 7.17 1.33 (0.89-1.98) 0.159
 No† 6601 5.49 1.00 -
Raw fish
 Yes 533 6.12 1.11 (0.77-1.61) 0.571
 No† 6467 5.54 1.00 -
Work
As a day care provider or in the health sector where one could have been in contact with human stools
 Yes 337 8.39 1.59 (1.06-2.37) 0.023
 No† 6668 5.45 1.00 -
In a pet shop, a zoo, an animal clinic, a farm, a slaughterhouse
 Yes 773 5.04 0.88 (0.63-1.24) 0.474
 No† 6231 5.66 1.00 -
As a chef or assistant chef
 Yes 206 7.41 1.37 (0.80-2.33) 0.250
 No† 6799 5.54 1.00 -
Take care or baby sit some children
 Yes 1262 5.07 0.88 (0.67-1.16) 0.374
 No† 5739 5.70 1.00 -
Travel History
 Yes 372 6.28 1.14 (0.74-1.75) 0.553
 No† 6634 5.55 1.00 -

* Weighted n, weighted by age and sex to the population of the study area, according to the data from the 2006 Canadian census of population.

† Reference.

‡ Travelling outside Canada within four weeks prior to the onset of AGI (for cases) or interview date (non-cases)

Multivariate analysis

The initial multivariate regression model included the following variables: intensive farming activity, the presence of manure 300 meters or less from the house, having pets at home, age, income, education, number of individuals (older than 3 months old) in the household, length of stay in a municipality, season, water source, swimming in a public swimming pool or whirlpool, consumption of unpasteurized milk or raw milk cheese, consumption of raw eggs and working as a day care educator or in the health sector where one could have been in contact with human stools. No multicollinearity between the variables was detected.

Association between intensive animal farming activities and AGI

In the final model, we observed that high intensive farming activity was negatively associated with AGI (OR = 0.70, 95% Confidence Interval (CI): 0.51-0.96; Table 5). The negative association was observed particularly in respondents using domestic wells as their primary water source (OR = 0.49, 95% CI: 0.32-0.74). Respondents using community surface water had the highest risk of AGI, however this was not statistically significant (OR = 1.51, 95% CI: 0.97-2.36; Table 6). Age and season were not found to modify the association between farming activity intensity and AGI (p-value for the interaction term of: 'age*farming' = 0.930; 'season*farming'= 0.466).

Table 5.

Adjusted odds ratios (OR) from the multivariate model of the association between intensive animal farming activity and acute gastrointestinal illness in Quebec rural municipalities, Canada, April 2007 to April 2008 (weighted n = 6162)

Variable* OR 95% CI p
Farming
 Low intensive† 1.00 - -
 High intensive 0.70 0.51-0.96 0.027
Water source 0.265‡
 Community ground water† 1.00 - -
 Community surface water 1.24 0.82-1.87 0.298
 Domestic wells 0.94 0.70-1.28 0.707
 Others 0.85 0.44-1.62 0.621
Age (years) <0.001‡
 0-4 5.17 2.70-9.87 <0.001
 5-9 2.72 1.37-5.41 0.004
 10-19 1.54 0.77-3.08 0.225
 20-29 1.79 1.04-3.09 0.037
 30-39 1.35 0.76-2.42 0.309
 40-49† 1.00 - -
 50-59 0.98 0.63-1.56 0.968
 60-69 0.72 0.42-1.23 0.230
 70-79 0.51 0.26-1.00 0.050
 ≥80 0.60 0.21-1.69 0.331
Length of stay in the municipality 0.061‡
 Less than a year 1.00 0.52-1.91 0.992
 1 to 5 years 1.16 0.80-1.68 0.423
 6 to 10 years 1.60 1.12-2.28 0.010
 Over 10 years† 1.00 - -
Season 0.056‡
 Winter 1.52 0.94-2.47 0.088
 Spring 1.51 1.00-2.28 0.049
 Summer 1.11 0.74-1.67 0.613
 Fall† 1.00 - -

* All variables were introduced in one model and adjusted for family income, education level, consumption of raw eggs, and occupation where one may have been in contact with human stools.

† Reference group.

‡ Global p-value

Table 6.

Modification effect of water source on association between acute gastrointestinal illness and intensive farming activities (p for interaction term<0.001) in Quebec rural municipalities (weighted n = 6147), Canada, April 2007-April 2008

Municipality water source OR* 95% CI for OR p
Community ground water 0.78 0.48-1.25 0.295
Community surface water 1.51 0.97-2.36 0.067
Domestic wells 0.49 0.32-0.74 <0.001
Others 1.02 0.30-3.51 0.962

*Odds ratio for high versus low intensive farming activities adjusted for other risk factors.

Association between cumulative weekly precipitation and AGI

We observed significant effect modification of farming activity intensity (p = 0.005) and season (p = 0.026) on the association between cumulative precipitation of week 4 (days 22-28 before the onset of AGI) and AGI. The effect modification of water source on the association was only borderline significant (p = 0.056). The effect modification of age on the association between cumulative precipitation and AGI could not be assessed because the model did not statistically converge.

The cumulative precipitation of week 4 showed a greater risk of AGI when very low precipitation periods occurred in summer (OR = 2.19, 95% CI: 1.02-4.71) compared to low precipitation periods. The risk of AGI was also higher when high precipitation periods occurred in fall season, however the effect was not statistically significant (OR = 2.03, 95% CI: 0.95-4.34). We explored the ORs of AGI for cumulative precipitation according to season for each of the one-week-periods to assess trends. We observed similar and significant effects when high precipitation periods occurred in week 3 (days 15-21 prior to the onset of AGI) of the fall season (OR = 2.20, 95% CI: 1.09-4.44; Table 7).

Table 7.

Modification effect of season on association between acute gastrointestinal illness (AGI) and cumulative precipitation three and four weeks prior to the onset of AGI in Quebec rural municipalities, Canada, April 2007-April 2008

Week* W.n† Precipitation OR‡ (95% CI)
p-value for OR
p§

Spring Summer Fall
3 (days 15-21) 4770 High 0.83 (027-2.53)
0.749
0.71 (0.28-1.78)
0.457
2.20 (1.09-4.44)
0.028
0.162
Moderate 1.16 (0.65-2.06)
0.618
1.32 (0.72-2.41)
0.361
0.84 (0.43-1.65)
0.614
Low¶ 1.00 1.00 1.00
Very low 0.49 (0.23-1.03)
0.059
0.72 (0.24-2.18)
0.566
0.46 (0.14-1.46)
0.186
4 (days 22-28) 4771 High 0.75 (0.34-1.98)
0.829
0.92 (0.43-1.98)
0.829
2.03 (0.95-4.34)
0.068
0.026
Moderate 1.32 (0.77-2.27)
0.305
1.37 (0.70-2.67)
0.356
0.62 (0.31-1.24)
0.180
Low¶ 1.00 1.00 1.00
Very low 0.94 (0.39-2.28)
0.890
2.19 (1.02-4.71)
0.044
0.72 (0.24-2.14)
0.553

* Each one-week-period [prior to the onset of AGI (for cases) or the interview date (for non-cases)] was modelled separately.

† Weighted n, weighted by age and sex to the population of the study area, according to the data from the 2006 Canadian census of population.

‡ Odds ratio for the precipitation presented according to season. The odds ratio was adjusted for other risk factors. Winter season was excluded for the analysis because of very cold winters in Quebec, with precipitation taking mostly the form of snow during that season.

§ p-value for interaction term between precipitation and season.

¶ Reference

We checked the triple interaction of 'precipitation*season*water source' and 'precipitation*season*farming' for the cumulative precipitation of week 4. A significant statistical interaction between precipitation, season, and water source was observed (p = 0.046). For respondents using community ground water as their primary water source, high precipitation in summer increased the risk of AGI four weeks later by 2.5 times (OR = 2.51, 95% CI: 1.12-5.62) compared to low precipitation. For those using community surface water, high precipitation in the fall increased the risk of AGI four weeks later by 10 times (OR = 9.64, 95% CI: 2.42-38.37) compared to low precipitation. For those using domestic wells, dry weather (very low precipitation) in summer increased the risk of AGI four weeks later by 3 times (OR = 3.02, 95% CI: 1.12-8.13) compared low precipitation. We did not observed significant statistical interaction between precipitation, season, and farming activity intensity (p = 0.491).

Discussion

The overall monthly prevalence of AGI in our study population was 5.6%. The population living in municipalities with high intensive farming activities had a lower risk of AGI compared to those living in municipalities with low intensive farming activities. Furthermore, heavy precipitation episodes during fall and very low precipitation episodes during summer were found to be positively associated with AGI, but this depended on water source.

The overall monthly prevalence of AGI reported in our study population is consistent with reports from previous studies in Canada and other countries (British Columbia, Canada, 8.8%; United States, 7.6%; Ireland, 3.4%; Australia, 6.4%) [2,18]. The peak prevalence in children under five years and in winter observed in this study has also been observed in previous Canadian studies [3,18]. This may in part due to viral AGI, which is the leading cause of AGI in children especially in winter [19,20]. The lower prevalence in individuals who had lived longer in a municipality may be related with immunity given by constant low-level exposure from sources of pathogen [21-23].

Studies have associated higher intensive farming activities with higher risk of AGI [6,12,24,25]. An ecological study, which evaluated the association between farming activity and hospitalization rates for AGI in a similar study population as ours, found an increased risk of hospitalizations associated with high intensity farming, especially in children [12]. Surprisingly, in the current community-based study, we observed a negative association. This may be in part related to the severity of the AGI cases. In this study, we captured less severe cases. Of 379 cases, only 7 cases were hospitalized. Therefore, it is possible that the risk of AGI in municipalities with high intensive farming activities can only be observed in more severe cases. However, it is also possible that the ecologic study was actually measuring the higher probability that children with AGI get hospitalized more than adults. In this study, we were likely under sampling children and would not capture those hospitalized when phoned for interview. Consequently, it was less likely to see the association between AGI and farming intensity in children.

Immunity may also explain our findings. Protective immunity resulting from repeated exposure from pathogen sources, such as drinking water, has been considered to be an important factor [22,23,26]. It is possible that the residents of high intensive farming municipalities were frequently exposed to pathogens causing AGI, increasing their immunity. We did observe that respondents who had been living in a municipality for over 10 years had lower risk of AGI than those who had been living less than 10 years (Table 2). However, the result was unclear in multivariate analysis (Table 5). Some uncontrolled confounders such as manure treatment, especially composting, may also affect the results. As already known, composting produces heat which removes moisture and kills pathogens [27]. Other possible explanations could include that environmental regulations may be enforced more vigorously or more easily in high intensity farming regions. Unfortunately, we could not evaluate these alternate explanations here.

An increased risk of AGI related with high and very low precipitation episodes has been observed in our study and has also been found in other studies [7-9]. High precipitation may flush manure into surface or groundwater, releasing large microbial loads and thereby leading to contamination of drinking water sources [28]. A very low precipitation period can lead to a lowering of the water table and thereby opening up water flow channels, allowing groundwater to become contaminated by surface water. Less dilution of sewage effluents and animal waste can also result from a long dry period which may consequently contaminate water sources [7,29].

Studies in Canada and the United States have linked weather with AGI. The study by Thomas et al. [8] observed that the risk of a waterborne AGI outbreak increased (OR= 2.283; 95% CI 1.216 - 4.285) for precipitation events greater than the 93rd percentile. Curriero et al. [9] observed that 51% of waterborne disease outbreaks, which were mostly AGI, were preceded by precipitation events above the 90th percentile (p = 0.002). Furthermore, Nichols et al. [7] found a significant association between a waterborne disease outbreak and excess cumulative rainfall in the seven days prior to the outbreak (p = 0.001), as well as a significant association between low rainfall and the outbreaks (p = 0.002). Our study highlights some possible intervention windows in the summer and fall seasons for preventive actions, after either very dry or very wet episodes.

Our study has several strengths. Compared to the previous ecological study on the association between AGI and farming activity in the similar study population [12], this study included more individual-level data, allowing for the control of more individual-level confounders. The other strength of this study was the administration of the survey in both English and French, thus minimizing information bias due to language problems.

Our study has several limitations. When we evaluated the association between AGI and precipitation, we extrapolated precipitation data from available weather stations. Consequently, exposure data may not be precise given the high spatial variability of precipitation and the low density of such stations in rural areas. Also, water consumption was estimated at the moment of interview and did not necessarily reflect the actual water consumption before the occurrence of AGI symptoms. The ecological and aggregated nature of animal density data may also lead to a misclassification of exposure to microbes from animal source. One may live in a municipality with high animal density without being exposed to microbes by manure spreading, depending on a number of variables such as well protection, topography and drainage. All the preceding factors could over or underestimate exposure, leading to non-differential misclassification. Furthermore, we excluded 75 individuals who presented with other conditions (e.g. pregnancy) or with pre-existing illness from the case group, but kept them as non-cases. This may cause a misclassification bias. If some or all of the excluded cases were actually AGI cases, the prevalence of AGI and association observed will be underestimated. Another limitation was that we did not include individuals who lived in institutions in our survey. Since most of these individuals are elderly, and are thus more vulnerable to AGI, this may also lead to the underestimate prevalence of AGI and associations observed.

Conclusions

The study demonstrates that AGI represents a potentially significant health burden in Quebec rural municipalities, especially in young children. Higher and lower precipitation patterns in the fall and summer may contribute significantly to the occurrence of AGI in Quebec. However, their contributions may vary according to individual's drinking water source. Therefore, these results might be a stimulus for drinking water providers to increase their precautions, especially after high precipitation events. Domestic well owners should also be more careful in dry spells and consider eventually alternate sources for drinking water. Further investigation is needed to clarify this association, as well as the negative association observed between intensive farming activity and AGI.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

YF performed statistical analysis and drafted the manuscript. PL and PG conceived of the study, and participated in its design and coordination. SG participated in the design of the study and planned data analysis. SM and MF participated in the design of the study. All authors were involved in interpreting the results and revising the manuscript. All authors read and approved the final manuscript.

Pre-publication history

The pre-publication history for this paper can be accessed here:

http://www.biomedcentral.com/1471-2458/10/48/prepub

Contributor Information

Yossi Febriani, Email: yossi.febriani.1@ulaval.ca.

Patrick Levallois, Email: patrick.levallois@msp.ulaval.ca.

Suzanne Gingras, Email: suzanne.gingras@inspq.qc.ca.

Pierre Gosselin, Email: pierre.gosselin@inspq.qc.ca.

Shannon E Majowicz, Email: shannon.majowicz@phac-aspc.gc.ca.

Manon D Fleury, Email: Manon_D_Fleury@phac-aspc.gc.ca.

Acknowledgements

The authors thank Dominique Bussières for participating in developing the study protocol; Christian Charron for extracting the precipitation data; Michel Fluet and the SOM enterprise for conducting the interviews; the Ministère de l'Agriculture, des Pêcheries, et de l'Alimentation du Québec for providing the farming activity data; the Ministère du Développement durable, de l'Environnement et des Parcs for providing the water source and precipitation data; and the Public Health Agency of Canada and the Ouranos for funding this research.

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